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Longitudinal subtypes of disordered gambling in young adults identified using mixed modeling

Longitudinal subtypes of disordered gambling in young adults identified using mixed modeling
Longitudinal subtypes of disordered gambling in young adults identified using mixed modeling

Objective: While many individuals gamble responsibly, some develop maladaptive symptoms of a gambling disorder. Gambling problems often first occur in young people, yet little is known about the longitudinal course of such symptoms and whether this course can be predicted. The aim of this study was to identify latent subtypes of disordered gambling based on symptom presentation and identify predictors of persisting gambling symptoms over time. Methods: 575 non-treatment seeking young adults (mean age [SD] = 22.3 [3.6] years; 376 (65.4%) male) were assessed at baseline and annually, over three years, using measures of gambling severity. Latent subtypes of gambling symptoms were identified using latent mixture modeling. Baseline differences were characterized using analysis of variance and binary logistic regression respectively. Results: Three longitudinal phenotypes of disordered gambling were identified: high harm group (N = 5.6%) who had moderate-severe gambling disorder at baseline and remained symptomatic at follow-up; intermediate harm group (19.5%) who had problem gambling reducing over time; and low harm group (75.0%) who were essentially asymptomatic. Compared to the low harm group, the other two groups had worse baseline quality of life, elevated occurrence of other mental disorders and substance use, higher body mass indices, and higher impulsivity, compulsivity, and cognitive deficits. Approximately 5% of the total sample showed worsening of gambling symptoms over time, and this rate did not differ significantly between the groups. Conclusions: Three subtypes of disordered gambling were found, based on longitudinal symptom data. Even the intermediate gambling group had a profundity of psychopathological and untoward physical health associations. Our data indicate the need for large-scale international collaborations to identify predictors of clinical worsening in people who gamble, across the full range of baseline symptom severity from minimal to full endorsement of current diagnostic criteria for gambling disorder.

Addiction, Cognition, Gambling, Impulsivity, Latent, Subtypes
0278-5846
Chamberlain, Samuel R.
8a0e09e6-f51f-4039-9287-88debe8d8b6f
Stochl, Jan
b13cf9f0-d807-48b1-8954-fb39fb5f1f1f
Grant, Jon E.
07372bd5-8a0d-42b4-b41b-e376c652acf3
Chamberlain, Samuel R.
8a0e09e6-f51f-4039-9287-88debe8d8b6f
Stochl, Jan
b13cf9f0-d807-48b1-8954-fb39fb5f1f1f
Grant, Jon E.
07372bd5-8a0d-42b4-b41b-e376c652acf3

Chamberlain, Samuel R., Stochl, Jan and Grant, Jon E. (2020) Longitudinal subtypes of disordered gambling in young adults identified using mixed modeling. Progress in Neuro-Psychopharmacology and Biological Psychiatry, 97, [109799]. (doi:10.1016/j.pnpbp.2019.109799).

Record type: Article

Abstract

Objective: While many individuals gamble responsibly, some develop maladaptive symptoms of a gambling disorder. Gambling problems often first occur in young people, yet little is known about the longitudinal course of such symptoms and whether this course can be predicted. The aim of this study was to identify latent subtypes of disordered gambling based on symptom presentation and identify predictors of persisting gambling symptoms over time. Methods: 575 non-treatment seeking young adults (mean age [SD] = 22.3 [3.6] years; 376 (65.4%) male) were assessed at baseline and annually, over three years, using measures of gambling severity. Latent subtypes of gambling symptoms were identified using latent mixture modeling. Baseline differences were characterized using analysis of variance and binary logistic regression respectively. Results: Three longitudinal phenotypes of disordered gambling were identified: high harm group (N = 5.6%) who had moderate-severe gambling disorder at baseline and remained symptomatic at follow-up; intermediate harm group (19.5%) who had problem gambling reducing over time; and low harm group (75.0%) who were essentially asymptomatic. Compared to the low harm group, the other two groups had worse baseline quality of life, elevated occurrence of other mental disorders and substance use, higher body mass indices, and higher impulsivity, compulsivity, and cognitive deficits. Approximately 5% of the total sample showed worsening of gambling symptoms over time, and this rate did not differ significantly between the groups. Conclusions: Three subtypes of disordered gambling were found, based on longitudinal symptom data. Even the intermediate gambling group had a profundity of psychopathological and untoward physical health associations. Our data indicate the need for large-scale international collaborations to identify predictors of clinical worsening in people who gamble, across the full range of baseline symptom severity from minimal to full endorsement of current diagnostic criteria for gambling disorder.

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More information

Published date: 8 March 2020
Keywords: Addiction, Cognition, Gambling, Impulsivity, Latent, Subtypes

Identifiers

Local EPrints ID: 493116
URI: http://eprints.soton.ac.uk/id/eprint/493116
ISSN: 0278-5846
PURE UUID: 314a1144-bd1d-4930-a06d-c992f2c5c3a9
ORCID for Samuel R. Chamberlain: ORCID iD orcid.org/0000-0001-7014-8121

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Date deposited: 22 Aug 2024 17:21
Last modified: 23 Aug 2024 02:00

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Contributors

Author: Samuel R. Chamberlain ORCID iD
Author: Jan Stochl
Author: Jon E. Grant

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